Deep Neural Networks with ReLU-Sine-Exponential Activations Break Curse of Dimensionality in Approximation on H\"older Class
Yuling Jiao, Yanming Lai, Xiliang Lu, Fengru Wang, Jerry Zhijian Yang,, Yuanyuan Yang

TL;DR
This paper introduces neural networks with ReLU, sine, and exponential activations that effectively approximate Hölder continuous functions in high dimensions, overcoming the curse of dimensionality and enabling efficient training.
Contribution
The paper constructs a new class of neural networks with mixed activations that achieve dimension-independent approximation rates for Hölder functions.
Findings
Networks overcome curse of dimensionality in approximation.
ReLU-sine-$2^x$ networks are highly expressive and differentiable.
Efficient training via SGD is enabled by the networks' differentiability.
Abstract
In this paper, we construct neural networks with ReLU, sine and as activation functions. For general continuous defined on with continuity modulus , we construct ReLU-sine- networks that enjoy an approximation rate , where denote the hyperparameters related to widths of the networks. As a consequence, we can construct ReLU-sine- network with the depth and width that approximates within a given tolerance measured in norm , where denotes the H\"older…
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Taxonomy
TopicsNeural Networks and Applications · Model Reduction and Neural Networks · Advanced Numerical Analysis Techniques
MethodsStochastic Gradient Descent · *Communicated@Fast*How Do I Communicate to Expedia?
